Active Learning for Human-in-the-Loop Customs Inspection
- URL: http://arxiv.org/abs/2010.14282v3
- Date: Wed, 23 Feb 2022 08:40:56 GMT
- Title: Active Learning for Human-in-the-Loop Customs Inspection
- Authors: Sundong Kim and Tung-Duong Mai and Sungwon Han and Sungwon Park and
Thi Nguyen Duc Khanh and Jaechan So and Karandeep Singh and Meeyoung Cha
- Abstract summary: We study the human-in-the-loop customs inspection scenario, where an AI-assisted algorithm supports customs officers by recommending a set of imported goods to be inspected.
We show that a hybrid strategy of selecting likely fraudulent and uncertain items will eventually outperform the exploitation-only strategy.
- Score: 12.66621970520437
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We study the human-in-the-loop customs inspection scenario, where an
AI-assisted algorithm supports customs officers by recommending a set of
imported goods to be inspected. If the inspected items are fraudulent, the
officers can levy extra duties. Th formed logs are then used as additional
training data for successive iterations. Choosing to inspect suspicious items
first leads to an immediate gain in customs revenue, yet such inspections may
not bring new insights for learning dynamic traffic patterns. On the other
hand, inspecting uncertain items can help acquire new knowledge, which will be
used as a supplementary training resource to update the selection systems.
Based on multiyear customs datasets obtained from three countries, we
demonstrate that some degree of exploration is necessary to cope with domain
shifts in trade data. The results show that a hybrid strategy of selecting
likely fraudulent and uncertain items will eventually outperform the
exploitation-only strategy.
Related papers
- Learn When (not) to Trust Language Models: A Privacy-Centric Adaptive Model-Aware Approach [23.34505448257966]
Retrieval-augmented large language models (LLMs) have been remarkably competent in various NLP tasks.
Previous work has proposed to determine when to do/skip the retrieval in a data-aware manner by analyzing the LLMs' pretraining data.
These data-aware methods pose privacy risks and memory limitations, especially when requiring access to sensitive or extensive pretraining data.
We hypothesize that token embeddings are able to capture the model's intrinsic knowledge, which offers a safer and more straightforward way to judge the need for retrieval without the privacy risks associated with accessing pre-training data.
arXiv Detail & Related papers (2024-04-04T15:21:22Z) - Detecting and Triaging Spoofing using Temporal Convolutional Networks [6.24302896438145]
algorithmic trading and electronic markets continue to transform the landscape of financial markets.
We propose a framework that can be adapted easily to various problems in the space of detecting market manipulation.
arXiv Detail & Related papers (2024-03-20T09:17:12Z) - ExpeL: LLM Agents Are Experiential Learners [60.54312035818746]
We introduce the Experiential Learning (ExpeL) agent to allow learning from agent experiences without requiring parametric updates.
Our agent autonomously gathers experiences and extracts knowledge using natural language from a collection of training tasks.
At inference, the agent recalls its extracted insights and past experiences to make informed decisions.
arXiv Detail & Related papers (2023-08-20T03:03:34Z) - GraphFC: Customs Fraud Detection with Label Scarcity [21.7060251265426]
With limited manpower, the custom offices can only undertake manual inspection of a limited number of declarations.
Current approaches for customs fraud detection are not well suited and designed for this real-world setting.
In this work, we propose a model-agnostic, domain-specific, semi-supervised graph neural network based customs fraud detection algorithm.
arXiv Detail & Related papers (2023-05-19T01:47:12Z) - Customs Import Declaration Datasets [12.306592823750385]
We introduce an import declaration dataset to facilitate the collaboration between domain experts in customs administrations and researchers from diverse domains.
The dataset contains 54,000 artificially generated trades with 22 key attributes.
We empirically show that more advanced algorithms can better detect fraud.
arXiv Detail & Related papers (2022-08-04T06:20:20Z) - Customs Fraud Detection in the Presence of Concept Drift [2.257416403770908]
ADAPT is an adaptive selection method that controls the balance between exploitation and exploration strategies.
We find the system with ADAPT can gradually adapt to the dataset and find the appropriate amount of exploration ratio with high performance.
arXiv Detail & Related papers (2021-09-29T02:52:19Z) - A Survey of Exploration Methods in Reinforcement Learning [64.01676570654234]
Reinforcement learning agents depend crucially on exploration to obtain informative data for the learning process.
In this article, we provide a survey of modern exploration methods in (Sequential) reinforcement learning, as well as a taxonomy of exploration methods.
arXiv Detail & Related papers (2021-09-01T02:36:14Z) - MURAL: Meta-Learning Uncertainty-Aware Rewards for Outcome-Driven
Reinforcement Learning [65.52675802289775]
We show that an uncertainty aware classifier can solve challenging reinforcement learning problems.
We propose a novel method for computing the normalized maximum likelihood (NML) distribution.
We show that the resulting algorithm has a number of intriguing connections to both count-based exploration methods and prior algorithms for learning reward functions.
arXiv Detail & Related papers (2021-07-15T08:19:57Z) - Exploration and Incentives in Reinforcement Learning [107.42240386544633]
We consider complex exploration problems, where each agent faces the same (but unknown) MDP.
Agents control the choice of policies, whereas an algorithm can only issue recommendations.
We design an algorithm which explores all reachable states in the MDP.
arXiv Detail & Related papers (2021-02-28T00:15:53Z) - Parrot: Data-Driven Behavioral Priors for Reinforcement Learning [79.32403825036792]
We propose a method for pre-training behavioral priors that can capture complex input-output relationships observed in successful trials.
We show how this learned prior can be used for rapidly learning new tasks without impeding the RL agent's ability to try out novel behaviors.
arXiv Detail & Related papers (2020-11-19T18:47:40Z) - Mining Implicit Relevance Feedback from User Behavior for Web Question
Answering [92.45607094299181]
We make the first study to explore the correlation between user behavior and passage relevance.
Our approach significantly improves the accuracy of passage ranking without extra human labeled data.
In practice, this work has proved effective to substantially reduce the human labeling cost for the QA service in a global commercial search engine.
arXiv Detail & Related papers (2020-06-13T07:02:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.